使用 IR-UWB 雷达在重度杂波室内环境中进行 CFAR 压缩探测:得到实验支持的新结果

Zaynab Baydoun;Roua Youssef;Emanuel Radoi;Stéphane Azou;Tina Yaacoub
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引用次数: 0

摘要

本文介绍了一种新颖的恒定误报率(CFAR)压缩探测方法,用于使用脉冲无线电超宽带(IR-UWB)雷达进行人体探测。相关的 Xampling 方案在低于奈奎斯特极限的情况下运行,旨在最大限度地降低传感矩阵相干性(SMC),同时不增加实施的复杂性。所提出的信号处理架构的目标是在智能工厂室内环境等杂乱无章的使用案例中检测移动和静止的人员。为了应对这一挑战,我们不仅依靠标准的雷达信号处理,包括移动目标指示器(MTI)滤波、噪声白化和多普勒聚焦(DF),还引入了两种新算法,分别用于快速时间域和测距-多普勒域的联合稀疏重建(SR)和 CFAR 检测。我们提出了一种特定的检测统计量,该统计量被证明适用于这两种算法,其分布已被确定,并通过标准拟合优度测试进行了验证。此外,它还能降低 CFAR 方案的复杂性,因为相关的检测阈值与噪声功率无关,因此无需对其进行估计。最后,我们在工业 4.0 室内环境中使用模拟数据和实验测量数据,针对几种典型场景对所提出的方法进行了验证。因此,我们的 CFAR 压缩检测算法在人体检测方面的有效性得到了充分证明,其性能也得到了评估,并与奈奎斯特采样率信号处理所获得的性能进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CFAR Compressed Detection in Heavy-Cluttered Indoor Environments Using IR-UWB Radar: New Experimentally Supported Results
This article presents a novel constant false alarm rate (CFAR) compressed detection approach for human detection using the impulse radio ultrawideband (IR-UWB) radar. The associated Xampling scheme operates way below the Nyquist limit and is designed to minimize the sensing matrix coherence (SMC), without increasing the implementation complexity. The proposed signal-processing architecture aims to detect both moving and stationary people in the framework of heavy-cluttered use cases, such as smart factory indoor environments. To address this challenge, we not only rely on standard radar signal processing, including moving target indicator (MTI) filtering, noise whitening, and Doppler focusing (DF), but also introduce two new algorithms for joint sparse reconstruction (SR) and CFAR detection, in fast-time and range-Doppler domains, respectively. We propose a specific detection statistic, which is proven to be appropriate for both algorithms, its distribution being identified and then validated by standard goodness-of-fit tests. Moreover, it enables reducing the CFAR scheme complexity, since the associated detection threshold is invariant to the noise power, thus making unnecessary its estimation. The proposed approach is finally validated using both simulated and experimentally measured data in an Industry 4.0 indoor environment, for several canonical scenarios. The effectiveness of our CFAR compressed detection algorithms for human detection is thus fully demonstrated, and their performance is assessed and compared to that obtained by signal processing at the Nyquist sampling rate.
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